# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements.  See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership.  The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License.  You may obtain a copy of the License at
#
#   http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied.  See the License for the
# specific language governing permissions and limitations
# under the License.

# This code generates dplyr-funcs-doc.R.
# It requires that the package be installed.

file_template <- "# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements.  See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership.  The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# \"License\"); you may not use this file except in compliance
# with the License.  You may obtain a copy of the License at
#
#   http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# \"AS IS\" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied.  See the License for the
# specific language governing permissions and limitations
# under the License.

# Generated by using data-raw/docgen.R -> do not edit by hand

#' Functions available in Arrow dplyr queries
#'
#' The `arrow` package contains methods for %s `dplyr` table functions, many of
#' which are \"verbs\" that do transformations to one or more tables.
#' The package also has mappings of %s R functions to the corresponding
#' functions in the Arrow compute library. These allow you to write code inside
#' of `dplyr` methods that call R functions, including many in packages like
#' `stringr` and `lubridate`, and they will get translated to Arrow and run
#' on the Arrow query engine (Acero). This document lists all of the mapped
#' functions.
#'
#' # `dplyr` verbs
#'
#' Most verb functions return an `arrow_dplyr_query` object, similar in spirit
#' to a `dbplyr::tbl_lazy`. This means that the verbs do not eagerly evaluate
#' the query on the data. To run the query, call either `compute()`,
#' which returns an `arrow` [Table], or `collect()`, which pulls the resulting
#' Table into an R `tibble`.
#'
%s
#'
#' # Function mappings
#'
#' In the list below, any differences in behavior or support between Acero and
#' the R function are listed. If no notes follow the function name, then you
#' can assume that the function works in Acero just as it does in R.
#'
#' Functions can be called either as `pkg::fun()` or just `fun()`, i.e. both
#' `str_sub()` and `stringr::str_sub()` work.
#'
#' In addition to these functions, you can call any of Arrow's %s compute
#' functions directly. Arrow has many functions that don't map to an existing R
#' function. In other cases where there is an R function mapping, you can still
#' call the Arrow function directly if you don't want the adaptations that the R
#' mapping has that make Acero behave like R. These functions are listed in the
#' [C++ documentation](https://arrow.apache.org/docs/cpp/compute.html), and
#' in the function registry in R, they are named with an `arrow_` prefix, such
#' as `arrow_ascii_is_decimal`.
#'
%s
#'
#' @name acero
#'
#' @aliases arrow-functions arrow-verbs arrow-dplyr
NULL"

library(dplyr)
library(purrr)

# Functions that for whatever reason cause xref problems, so don't hyperlink
do_not_link <- c()

package_notes <- list(
  stringr = "Pattern modifiers `coll()` and `boundary()` are not supported in any functions."
)

# Vectorized function to make entries for each function
render_fun <- function(fun, pkg_fun, notes) {
  # Add () to fun if it's not an operator
  not_operators <- grepl("^[[:alpha:]]", fun)
  fun[not_operators] <- paste0(fun[not_operators], "()")
  # Make it \code{} for better formatting
  fun <- paste0("`", fun, "`")
  # Wrap in \link{}
  out <- ifelse(
    pkg_fun %in% do_not_link,
    fun,
    paste0("[", fun, "][", pkg_fun, "()]")
  )
  # Add notes after :, if exist
  has_notes <- nzchar(notes)
  out[has_notes] <- paste0(out[has_notes], ": ", notes[has_notes])
  # Make bullets
  paste("*", out)
}

# This renders a bulleted list under a package heading
render_pkg <- function(df, pkg) {
  bullets <- df %>%
    transmute(render_fun(fun, pkg_fun, notes)) %>%
    pull()
  header <- paste0("## ", pkg, "\n#'")
  # Some packages have global notes to include
  pkg_notes <- package_notes[[pkg]]
  if (!is.null(pkg_notes)) {
    pkg_notes <- paste(pkg_notes, collapse = "\n#' ")
    header <- c(header, paste0(pkg_notes, "\n#'"))
  }
  paste("#'", c(header, bullets), collapse = "\n")
}

docs <- arrow:::.cache$docs

# Add some functions

# across() is handled by manipulating the quosures, not by nse_funcs
docs[["dplyr::across"]] <- character(0)

# if_any() and if_all() are used instead of across() in filter()
# they are both handled by manipulating the quosures, not by nse_funcs
docs[["dplyr::if_any"]] <- character(0)
docs[["dplyr::if_all"]] <- character(0)

# desc() is a special helper handled inside of arrange()
docs[["dplyr::desc"]] <- character(0)

# add tidyselect helpers by parsing the reexports file
tidyselect <- grep("^tidyselect::", readLines("R/reexports-tidyselect.R"), value = TRUE)

# HACK: remove the _random_along UDF we're using (fix in ARROW-17974)
docs[["_random_along"]] <- NULL

# TODO - update the script to add this back in - will fail CI as tries to link
# to non-existent function as arrow::one only exists as registered binding
docs[["arrow::one"]] <- NULL

docs <- c(docs, setNames(rep(list(NULL), length(tidyselect)), tidyselect))

fun_df <- tibble::tibble(
  pkg_fun = names(docs),
  notes = docs
) %>%
  mutate(
    has_pkg = grepl("::", pkg_fun),
    fun = sub("^.*?:{+}", "", pkg_fun),
    pkg = sub(":{+}.*$", "", pkg_fun),
    # We will list operators under "base" (everything else must be pkg::fun)
    pkg = if_else(has_pkg, pkg, "base"),
    # Flatten notes to a single string
    notes = map_chr(notes, ~ paste(., collapse = "\n#' "))
  ) %>%
  arrange(pkg, fun)

# Group by package name and render the lists
fun_doclets <- imap_chr(split(fun_df, fun_df$pkg), render_pkg)

dplyr_verbs <- c(
  arrow:::supported_dplyr_methods,
  # Because this only has a method for arrow_dplyr_query, it's not in the main list
  tbl_vars = NULL
)

verb_bullets <- tibble::tibble(
  fun = names(dplyr_verbs),
  notes = dplyr_verbs
) %>%
  mutate(
    pkg_fun = paste0("dplyr::", fun),
    notes = map_chr(notes, ~ paste(., collapse = " "))
  ) %>%
  arrange(fun) %>%
  transmute(render_fun(fun, pkg_fun, notes)) %>%
  pull()

writeLines(
  sprintf(
    file_template,
    length(dplyr_verbs),
    length(docs),
    paste("#'", verb_bullets, collapse = "\n"),
    length(arrow::list_compute_functions()),
    paste(fun_doclets, collapse = "\n#'\n")
  ),
  "R/dplyr-funcs-doc.R"
)
